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Recommended Practices and Ethical Considerations for Natural Language Processing-Assisted Observational Research: A Scoping Review.

Sunyang FuLiwei WangSungrim MoonNansu ZongHuan HeVikas PejaverRose RelevoAnita WaldenMelissa HaendelChristopher G ChuteHongfang Liu
Published in: Clinical and translational science (2022)
An increasing number of studies have reported using natural language processing (NLP) to assist observational research by extracting clinical information from electronic health records (EHRs). Currently, no standardized reporting guidelines for NLP-assisted observational studies exist. The absence of detailed reporting guidelines may create ambiguity in the use of NLP-derived content, knowledge gaps in the current research reporting practices, and reproducibility challenges. To address these issues, we conducted a scoping review of NLP-assisted observational clinical studies and examined their reporting practices, focusing on NLP methodology and evaluation. Through our investigation, we discovered a high variation regarding the reporting practices, such as inconsistent use of references for measurement studies, variable reporting location (reference, appendix, and manuscript), and different granularity of NLP methodology and evaluation details. To promote the wide adoption and utilization of NLP solutions in clinical research, we outline several perspectives that align with the six principles released by WHO that guide the ethical use of AI for health.
Keyphrases
  • adverse drug
  • healthcare
  • electronic health record
  • primary care
  • autism spectrum disorder
  • clinical practice
  • emergency department
  • artificial intelligence
  • machine learning
  • clinical decision support